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Compressive adaptive ghost imaging via sharing mechanism and fellow relationship

机译:通过共享机制和伙伴关系进行压缩自适应鬼影成像

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摘要

For lower sampling rate and better imaging quality, a compressive adaptive ghost imaging is proposed by adopting the sharing mechanism and fellow relationship in the wavelet tree. The sharing mechanisms, including intrascale and interscale sharing mechanisms, and fellow relationship are excavated from the wavelet tree and utilized for sampling. The shared coefficients, which are part of the approximation subband, are localized according to the parent coefficients and sampled based on the interscale sharing mechanism and fellow relationship. The sampling rate can be reduced owing to the fact that some shared coefficients can be calculated by adopting the parent coefficients and the sampled sum of shared coefficients. According to the shared coefficients and parent coefficients, the proposed method predicts the positions of significant coefficients and samples them based on the intrascale sharing mechanism. The ghost image, reconstructed by the significant coefficients and the coarse image at the given largest scale, achieves better quality because the significant coefficients contain more detailed information. The simulations demonstrate that the proposed method improves the imaging quality at the same sampling rate and also achieves a lower sampling rate for the same imaging quality for different types of target object images in noise-free and noisy environments. (C) 2016 Optical Society of America
机译:为了降低采样率,提高成像质量,在小波树中采用了共享机制和同伴关系,提出了压缩自适应重影。从小波树中挖掘出尺度内和尺度间的共享机制以及同伴关系,并用于采样。作为近似子带的一部分的共享系数根据父系数进行定位,并根据尺度间共享机制和同伴关系进行采样。由于可以通过采用父系数和共享系数的采样和来计算一些共享系数,因此可以降低采样率。根据共享系数和父系数,该方法根据尺度内共享机制预测有效系数的位置并对其进行采样。通过有效系数重构的重影图像和给定最大比例下的粗糙图像可实现更好的质量,因为有效系数包含更详细的信息。仿真表明,在无噪声,高噪声的环境下,针对不同类型的目标物体图像,在相同采样率下,所提方法可以提高成像质量,并且对于相同成像质量,可以实现较低的采样率。 (C)2016美国眼镜学会

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